Validity of a Smart-Glasses-Based Step-Count Measure during Simulated Free-Living Conditions
Abstract
:1. Introduction
2. Materials and Methods
2.1. Essilor Connected Glasses Prototype
2.2. Equipment
- Two inertial measurement units (Shimmer3 IMUs, Shimmer Sensing, Dublin, fs = 128 Hz): commercially available motion sensors (fs = 128 Hz) worn at the ankles and used as gold standard (Figure 2a);
- Waist-worn step counter (Fitbit zip, Fitbit, San Francisco, CA, USA): a commercially available step counter used as comparison tool (Figure 2b);
- Wrist-worn step counter (Fitbit Alta, Fitbit, San Francisco, CA, USA): commercially available step counter used as comparison tool (Figure 2c);
- Wrist-worn step counter (Garmin vivo smart HR, Garmin, Olathe, KS, USA): commercially available step counter used as comparison tool (Figure 2d).
2.3. Sample Population
2.4. Experimental Procedure
- Walking speed—The participant was invited to walk on a straight surface, in Z2 (Figure 3a), at a comfortable speed, and the activity was then repeated twice: at a self-selected fast speed and at a self-selected slow speed.
- Walking surface—The participant was invited to walk at comfortable speed, in Z3 (Figure 3a), on a sloped surface first and then on a grassy surface.
- Walking type—The participant was invited to perform several walking activities: walking while pushing the cart and walking among the people in Z1 (Figure 3a); walking with a bag (twice, both for left and right side) and walking with a phone (twice, both for left and right side), in Z2 (Figure 3a); and walking along a curved path in Z3 (Figure 3a).
- Climbing stairs—The participant was invited to go up and down stairs, at a comfortable speed, in Z2 (Figure 3a).
2.5. Data Analysis
- Errors between number of steps by EC glasses and number of steps by Shimmer3 IMUs;
- Errors between number of steps by the employed commercial step counters (Fitbit zip, Fitbit Alta and Garmin vivo smart HR) and number of steps by Shimmer3 IMUs.
3. Results
3.1. Sample Population
3.2. Experimental Procedure
4. Discussion
- Walking speed—The step-counting functionality of the EC glasses is not affected by gait velocity, despite some slight fluctuations (E = 2% at comfortable speed, E = 3% at fast speed and E = 0% at slow speed). The lowest error is registered at a slow speed, contrary to the expectations, since step counters at central locations notoriously perform worse in the case of low speed, when compared with usual walking velocity. In that regard, the waist-worn Fitbit Zip presents an increase of 1% of error with respect to walking at a comfortable speed during walking both at slow and fast speeds. The same behavior is shown by the wrist-worn Fitbit Alta that reports an increase of error of 3% at both fast and slow speeds, when compared with the walking at comfortable speed. The wrist-worn Garmin vivo smart HR, instead, differs only at fast speed (+2% than at comfortable speed), by keeping the same error (E = 3%) in walking at a comfortable and slow velocity. Lastly, it is worth emphasizing that participants involved in the study were physically homogeneous and no great disparity among their self-selected velocities was noticed.
- Walking surface—The step-counting functionality of the EC glasses is not affected by the typology of surface: An increment of the only 1% is observed during walking at grassy surface, while an enhancement of accuracy is even resulted in “sloped surface” when compared with a “comfortable speed” task. Even if all devices preserve good performances when the incline of surface changes, different behaviors occur in the presence of grass. During walking on a grassy surface, Fitbit Zip registers an increase of 4%, Garmin vivo smart HR of 5% and Fitbit Alta an increment of 14%, with respect to the walking at comfortable speed. The grass probably makes the waist accelerations smoother, thus inevitably affecting the detection of steps, while the worsening of the wrist-worn devices is almost surprising, since the oscillating movements of the arms is preserved.
- Walking type—The step-counting functionality of the EC glasses remained almost stable for most of the tested activities. EC glasses kept very reassuring results during walking with the bag, with the phone, and along a curved path, as well as in the free walk. However, higher errors in walking while pushing a cart and in walking among people are reported (+9% and +16% than the “comfortable speed” task, respectively). The worsening in step counting observed in EC glasses during walking while pushing a cart could be due to a poor compensation of gravity contribution, since the head position usually points downward in such activity. However, the “with cart” and “among people” tasks result critical for the other devices, too. Increments of 6% and 18% of E, when compared with “comfortable speed”, were respectively registered in the tasks performed using the Fitbit Zip. The wrist-worn devices, instead, experience errors comparable with the ones of EC glasses and Fitbit Zip in “among people”, but they totally fail in detecting steps in “with cart” (see Table 3). Such results are in line with what the literature suggests: Indeed, during a walk with the cart, the arms are fixed and they completely miss their oscillating movement typical of the gait. The poorer performances found by all devices in walking among people, instead, are probably due to the varied gait of such a task, which is characterized by successions of quick paths and interruptions while meeting other people, variations in gait cadences and tiny little movements in crowded contexts. Such an issue, however, is not to be considered critical, since the steps failed in those circumstances are not representative of the physical activity performed.Walking type—The step-counting functionality of the EC glasses remained almost stable for most of the tested activities. EC glasses kept very reassuring results during walking with the bag, with the phone, and along a curved path, as well as in the free walk. However, higher errors in walking while pushing a cart and in walking among people are reported (+9% and +16% than the “comfortable speed” task, respectively). The worsening in step counting observed in EC glasses during walking while pushing a cart could be due to a poor compensation of gravity contribution, since the head position usually points downward in such activity. However, the “with cart” and “among people” tasks result critical for the other devices, too. Increments of 6% and 18% of E, when compared with “comfortable speed”, were respectively registered in the tasks performed using the Fitbit Zip. The wrist-worn devices, instead, experience errors comparable with the ones of EC glasses and Fitbit Zip in “among people”, but they totally fail in detecting steps in “with cart” (see Table 3). Such results are in line with what the literature suggests: Indeed, during a walk with the cart, the arms are fixed and they completely miss their oscillating movement typical of the gait. The poorer performances found by all devices in walking among people, instead, are probably due to the varied gait of such a task, which is characterized by successions of quick paths and interruptions while meeting other people, variations in gait cadences and tiny little movements in crowded contexts. Such an issue, however, is not to be considered critical, since the steps failed in those circumstances are not representative of the physical activity performed.
- Climbing stairs—In climbing stairs, the body moves vertically, and it moves horizontally when walking. Fitbit Zip resulted in being the most reliable in step counting while climbing stairs, followed by the EC glasses, although all used step counters report a worsening in the detection of steps in that task when compared with the walking at comfortable speed along a straight path. In particular, going down the stairs represents a very challenging task for Garmin vivo smart HR and Fitbit Alta, where, excluding the “with cart” task, they reach their highest errors (20% and 15%, respectively).
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Gender | Subjects’ Number (#) | Age (Years Old) m(sd) | Weight (kg) m(sd) | Height (m) m(sd) |
---|---|---|---|---|
Male | 9 | 25 ± 4 | 73 ± 7 | 1.8 ± 0.1 |
Female | 17 | 27 ± 8 | 60 ± 9 | 1.7 ± 0.1 |
Overall Steps (Ref.) (#) | E (%) | |||
---|---|---|---|---|
Garmin | Fitbit Alta | Fitbit Zip | EC Glasses | |
32,579 | 3 | 5 | 1 | 1 |
Activities | Steps (Ref.) (#) | E (%) | |||
---|---|---|---|---|---|
Garmin | Fitbit Alta | Fitbit Zip | EC Glasses | ||
Comfortable Speed | 1812 | 3 | 1 | 1 | 2 |
Fast Speed | 1636 | 5 | 4 | 2 | 3 |
Slow Speed | 2003 | 3 | 4 | 2 | 0 |
Sloped Surface | 5804 | 0 | 0 | 1 | 1 |
Grassy Surface | 834 | 8 | 15 | 5 | 3 |
With bag (left) | 1831 | 2 | 2 | 2 | 1 |
With bag (right) | 2176 | 5 | 0 | 2 | 2 |
With phone (left) | 1928 | 0 | 2 | 2 | 1 |
With phone (right) | 1949 | 5 | 2 | 2 | 1 |
With cart | 1488 | 100 | 99 | 7 | 11 |
Curved path | 1409 | 0 | 0 | 1 | 0 |
Among people | 2253 | 15 | 18 | 19 | 18 |
Stairs Up | 409 | 4 | 1 | 3 | 6 |
Stairs Down | 367 | 20 | 15 | 8 | 8 |
Free Walk | 6680 | 1 | 2 | 2 | 3 |
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Cristiano, A.; Sanna, A.; Trojaniello, D. Validity of a Smart-Glasses-Based Step-Count Measure during Simulated Free-Living Conditions. Information 2020, 11, 404. https://doi.org/10.3390/info11090404
Cristiano A, Sanna A, Trojaniello D. Validity of a Smart-Glasses-Based Step-Count Measure during Simulated Free-Living Conditions. Information. 2020; 11(9):404. https://doi.org/10.3390/info11090404
Chicago/Turabian StyleCristiano, Alessia, Alberto Sanna, and Diana Trojaniello. 2020. "Validity of a Smart-Glasses-Based Step-Count Measure during Simulated Free-Living Conditions" Information 11, no. 9: 404. https://doi.org/10.3390/info11090404
APA StyleCristiano, A., Sanna, A., & Trojaniello, D. (2020). Validity of a Smart-Glasses-Based Step-Count Measure during Simulated Free-Living Conditions. Information, 11(9), 404. https://doi.org/10.3390/info11090404